Musculoskeletal research such as studies of muscle growth in children with cerebral palsy (CP) often requires segmentation of muscles from magnetic resonance imaging (MRI) scans. This process has recently been automated by deep neural networks due to the costly and subjective nature of manual labelling. Deep neural networks typically perform well but, on average, tend to perform worse than human raters. Furthermore, deep neural networks need to generalize to scans of children with CP, which look different from scans of typically developing children because of differences in muscle size and composition, and typically constitute only a small portion of training data. To tackle those issues, we propose a novel end-to-end attention-based hybrid...
In this paper, we analyzed the application value and effect of deep learn-based image segmentation m...
Lumber paraspinal muscles (LPM) segmentation is of essential importance in predicting response to tr...
The practice of Deep Convolution neural networks in the field of medicine has congregated immense su...
Musculoskeletal research such as studies of muscle growth in children with cerebral palsy (CP) often...
Cerebral palsy is a neurological condition that is known to affect muscle growth. Detailed investiga...
Early prediction of cerebral palsy is essential as it leads to early treatment and monitoring. Deep...
Early prediction of cerebral palsy is essential as it leads to early treatment and monitoring. Deep ...
Quantitative MRI combines non-invasive imaging techniques to reveal alterations in muscle pathophysi...
Quantitative MRI combines non-invasive imaging techniques to reveal alterations in muscle pathophysi...
This experimental study is aimed at automatically classify the large indistinct group of children af...
The breakthrough of Artificial Intelligence with the advent of Deep Learning has opened paths beyond...
Cerebral palsy (CP) is associated with movement disorders and reduced muscle size. This latter pheno...
The early diagnosis of cerebral palsy is an area which has recently seen significant multi-disciplin...
The classification systems for cerebral palsy (CP) need to be continuouslyupdated, according to spec...
The early diagnosis of cerebral palsy is an area which has recently seen significant multi-disciplin...
In this paper, we analyzed the application value and effect of deep learn-based image segmentation m...
Lumber paraspinal muscles (LPM) segmentation is of essential importance in predicting response to tr...
The practice of Deep Convolution neural networks in the field of medicine has congregated immense su...
Musculoskeletal research such as studies of muscle growth in children with cerebral palsy (CP) often...
Cerebral palsy is a neurological condition that is known to affect muscle growth. Detailed investiga...
Early prediction of cerebral palsy is essential as it leads to early treatment and monitoring. Deep...
Early prediction of cerebral palsy is essential as it leads to early treatment and monitoring. Deep ...
Quantitative MRI combines non-invasive imaging techniques to reveal alterations in muscle pathophysi...
Quantitative MRI combines non-invasive imaging techniques to reveal alterations in muscle pathophysi...
This experimental study is aimed at automatically classify the large indistinct group of children af...
The breakthrough of Artificial Intelligence with the advent of Deep Learning has opened paths beyond...
Cerebral palsy (CP) is associated with movement disorders and reduced muscle size. This latter pheno...
The early diagnosis of cerebral palsy is an area which has recently seen significant multi-disciplin...
The classification systems for cerebral palsy (CP) need to be continuouslyupdated, according to spec...
The early diagnosis of cerebral palsy is an area which has recently seen significant multi-disciplin...
In this paper, we analyzed the application value and effect of deep learn-based image segmentation m...
Lumber paraspinal muscles (LPM) segmentation is of essential importance in predicting response to tr...
The practice of Deep Convolution neural networks in the field of medicine has congregated immense su...